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CoVA: Context-aware Visual Attention for Webpage Information Extraction
Anurendra Kumar; Keval Morabia; Jingjin Wang; Kevin Chen-Chuan Chang; Alexander Schwing

Abstract
Webpage information extraction (WIE) is an important step to create knowledge bases. For this, classical WIE methods leverage the Document Object Model (DOM) tree of a website. However, use of the DOM tree poses significant challenges as context and appearance are encoded in an abstract manner. To address this challenge we propose to reformulate WIE as a context-aware Webpage Object Detection task. Specifically, we develop a Context-aware Visual Attention-based (CoVA) detection pipeline which combines appearance features with syntactical structure from the DOM tree. To study the approach we collect a new large-scale dataset of e-commerce websites for which we manually annotate every web element with four labels: product price, product title, product image and background. On this dataset we show that the proposed CoVA approach is a new challenging baseline which improves upon prior state-of-the-art methods.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| webpage-object-detection-on-cova | CoVA++ | Cross Domain Image Accuracy: 99.6 Cross Domain Price Accuracy: 96.1 Cross Domain Title Accuracy: 96.7 |
| webpage-object-detection-on-cova | CoVA | Cross Domain Image Accuracy: 98.8 Cross Domain Price Accuracy: 95.5 Cross Domain Title Accuracy: 95.7 |
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